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利用社交媒体挖掘数据建模 COVID-19 导致的抑郁症状时空分布模式

Modeling Spatiotemporal Pattern of Depressive Symptoms Caused by COVID-19 Using Social Media Data Mining.

机构信息

Department of Geography, Texas A&M University, 3147 TAMU, College Station, TX 77843, USA.

Department of Computer Science and Engineering, Texas A&M University, 3112 TAMU, College Station, TX 77843, USA.

出版信息

Int J Environ Res Public Health. 2020 Jul 10;17(14):4988. doi: 10.3390/ijerph17144988.

Abstract

By 29 May 2020, the coronavirus disease (COVID-19) caused by SARS-CoV-2 had spread to 188 countries, infecting more than 5.9 million people, and causing 361,249 deaths. Governments issued travel restrictions, gatherings of institutions were cancelled, and citizens were ordered to socially distance themselves in an effort to limit the spread of the virus. Fear of being infected by the virus and panic over job losses and missed education opportunities have increased people's stress levels. Psychological studies using traditional surveys are time-consuming and contain cognitive and sampling biases, and therefore cannot be used to build large datasets for a real-time depression analysis. In this article, we propose a CorExQ9 algorithm that integrates a Correlation Explanation (CorEx) learning algorithm and clinical Patient Health Questionnaire (PHQ) lexicon to detect COVID-19 related stress symptoms at a spatiotemporal scale in the United States. The proposed algorithm overcomes the common limitations of traditional topic detection models and minimizes the ambiguity that is caused by human interventions in social media data mining. The results show a strong correlation between stress symptoms and the number of increased COVID-19 cases for major U.S. cities such as Chicago, San Francisco, Seattle, New York, and Miami. The results also show that people's risk perception is sensitive to the release of COVID-19 related public news and media messages. Between January and March, fear of infection and unpredictability of the virus caused widespread panic and people began stockpiling supplies, but later in April, concerns shifted as financial worries in western and eastern coastal areas of the U.S. left people uncertain of the long-term effects of COVID-19 on their lives.

摘要

截至 2020 年 5 月 29 日,由严重急性呼吸系统综合征冠状病毒 2 型(SARS-CoV-2)引起的冠状病毒病(COVID-19)已蔓延至 188 个国家,感染了超过 590 万人,并导致 361249 人死亡。各国政府发布了旅行限制令,取消了机构集会,命令公民保持社交距离,以努力限制病毒的传播。对感染病毒的恐惧以及对失业和错过教育机会的恐慌增加了人们的压力水平。使用传统调查进行的心理学研究既费时又费力,且存在认知和抽样偏差,因此无法用于构建可实时分析抑郁的大型数据集。在本文中,我们提出了一种 CorExQ9 算法,该算法集成了关联解释(CorEx)学习算法和临床患者健康问卷(PHQ)词典,以在美国的时空尺度上检测与 COVID-19 相关的应激症状。所提出的算法克服了传统主题检测模型的常见局限性,并最大限度地减少了社交媒体数据挖掘中人为干预引起的歧义。研究结果表明,主要美国城市(如芝加哥、旧金山、西雅图、纽约和迈阿密)的应激症状与 COVID-19 病例数的增加之间存在很强的相关性。研究结果还表明,人们对风险的感知对与 COVID-19 相关的公共新闻和媒体信息的发布很敏感。在 1 月至 3 月期间,对感染的恐惧和对病毒的不可预测性引起了广泛的恐慌,人们开始囤积物资,但后来在 4 月,随着美国东西海岸地区的金融担忧使人们对 COVID-19 对其生活的长期影响感到不确定,人们的担忧发生了转变。

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